JOURNAL ARTICLE

STAGED: A Spatial-Temporal Aware Graph Encoder–Decoder for Fault Diagnosis in Industrial Processes

Shizhong LiWenchao MengShibo HeJichao BiGuanglun Liu

Year: 2023 Journal:   IEEE Transactions on Industrial Informatics Vol: 20 (2)Pages: 1742-1752   Publisher: Institute of Electrical and Electronics Engineers

Abstract

Data-driven fault diagnosis for critical industrial processes has exhibited promising potential with massive operating data from the supervisory control and data acquisition system. However, automatically extracting the complicated interactions between measurements and subtly integrating them with temporal evolutions have not been fully considered. Besides, with the increasing complexity of industrial processes, accurately locating fault roots is of tremendous significance. In this article, we propose an unsupervised spatial-temporal aware graph encoder–decoder (STAGED) model for industrial fault diagnosis. First, the high-dimensional measurements are constructed as a weighted graph to depict the complicated interactions. Then, the graph convolutional network, long short-term memory network and attention mechanism are applied to learn a comprehensive representation for multiseries. To enforce the model to better capture the temporal evolution, the dual decoder that performs reconstruction and prediction tasks simultaneously is adopted with a well-designed comprehensive loss function. By learning the spatial-temporal evolutions of datasets, faults can be diagnosed and located at a fine-grained level based on reconstruction deviations. To verify the performance of STAGED, experiments on the Cranfield three-phase flow facility and secure water treatment datasets are implemented and the results indicate that it can provide insight into fault evolution and accurately diagnose faults.

Keywords:
Computer science Encoder Graph Feature learning Deep learning Fault (geology) External Data Representation Data mining Artificial intelligence Convolutional neural network Representation (politics) Machine learning Theoretical computer science

Metrics

32
Cited By
8.17
FWCI (Field Weighted Citation Impact)
30
Refs
0.97
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Anomaly Detection Techniques and Applications
Physical Sciences →  Computer Science →  Artificial Intelligence
Data Stream Mining Techniques
Physical Sciences →  Computer Science →  Artificial Intelligence
Fault Detection and Control Systems
Physical Sciences →  Engineering →  Control and Systems Engineering

Related Documents

JOURNAL ARTICLE

Interaction-Aware Graph Neural Networks for Fault Diagnosis of Complex Industrial Processes

Dongyue ChenRuonan LiuQinghua HuSteven X. Ding

Journal:   IEEE Transactions on Neural Networks and Learning Systems Year: 2021 Vol: 34 (9)Pages: 6015-6028
JOURNAL ARTICLE

A temporal-aware dual-attention network for fault diagnosis in industrial processes

Tongkang ZhangYongchao ZhangChunzhong LiDatong LiJinliang Ding

Journal:   Control Engineering Practice Year: 2025 Vol: 164 Pages: 106468-106468
JOURNAL ARTICLE

Spectral-domain Spatial-temporal Convolution Graph Neural Network for Industrial Fault Diagnosis

Jiapei RuWei Zeng

Journal:   Journal of Physics Conference Series Year: 2023 Vol: 2562 (1)Pages: 012086-012086
JOURNAL ARTICLE

Micro-Macro Spatial-Temporal Graph-Based Encoder-Decoder for Map-Constrained Trajectory Recovery

Tonglong WeiYoufang LinYan LinShengnan GuoL. D. ZhangHuaiyu Wan

Journal:   IEEE Transactions on Knowledge and Data Engineering Year: 2024 Vol: 36 (11)Pages: 6574-6587
© 2026 ScienceGate Book Chapters — All rights reserved.